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Published December 2017 | Submitted + Published
Conference Paper Open

Fixed-Rank Approximation of a Positive-Semidefinite Matrix from Streaming Data

Abstract

Several important applications, such as streaming PCA and semidefinite programming, involve a large-scale positive-semidefinite (psd) matrix that is presented as a sequence of linear updates. Because of storage limitations, it may only be possible to retain a sketch of the psd matrix. This paper develops a new algorithm for fixed-rank psd approximation from a sketch. The approach combines the Nyström approximation with a novel mechanism for rank truncation. Theoretical analysis establishes that the proposed method can achieve any prescribed relative error in the Schatten 1-norm and that it exploits the spectral decay of the input matrix. Computer experiments show that the proposed method dominates alternative techniques for fixed-rank psd matrix approximation across a wide range of examples.

Additional Information

The authors wish to thank Mark Tygert and Alex Gittens for helpful feedback on preliminary versions of this work. JAT gratefully acknowledges partial support from ONR Award N00014-17-1-2146 and the Gordon & Betty Moore Foundation. VC and AY were supported in part by the European Commission under Grant ERC Future Proof, SNF 200021-146750, and SNF CRSII2-147633. MU was supported in part by DARPA Award FA8750-17-2-0101.

Attached Files

Published - 6722-fixed-rank-approximation-of-a-positive-semidefinite-matrix-from-streaming-data.pdf

Submitted - 1706.05736.pdf

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6722-fixed-rank-approximation-of-a-positive-semidefinite-matrix-from-streaming-data.pdf
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Additional details

Created:
August 19, 2023
Modified:
October 23, 2023